User Tools

Site Tools


start

Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revisionPrevious revision
Next revision
Previous revision
start [2016/08/29 19:04] hjstart [2019/08/22 21:28] (current) hj
Line 1: Line 1:
 ~~NOTOC~~ ~~NOTOC~~
-====== EECS 6327 Probabilistic Models & Machine Learning (Fall 2016) ======+====== EECS 6327 Probabilistic Models & Machine Learning (Winter 2018) ======
  
 ===== Description  ===== ===== Description  =====
Line 9: Line 9:
   * Generative Models (2) - graphical models, directed vs. indirected graphical models, exact inference, approximate inference (loopy belief propagation, variational inference, Monte Carlo methods)   * Generative Models (2) - graphical models, directed vs. indirected graphical models, exact inference, approximate inference (loopy belief propagation, variational inference, Monte Carlo methods)
   * Discriminative Models (1) - linear discriminant, linear regression, lasso, logistic regression, support vector machines (SVM), sparse kernel machines   * Discriminative Models (1) - linear discriminant, linear regression, lasso, logistic regression, support vector machines (SVM), sparse kernel machines
-  * Discriminative Models (2) - neural networks (NN),  back-propagation, deep learning, recurrent neural networks, convolutional neural networks+  * Discriminative Models (2) - neural networks (NN),  back-propagation,  deep learning,   auto-encoder; recurrent neural networks, convolutional neural networks
   * Advanced models: hidden Markov model (HMM),  Latent Dirichlet Allocation (LDA), Conditional Random Fields (CRF), Convolutional Neural Nets, Recurrent Neural Nets and LSTMs   * Advanced models: hidden Markov model (HMM),  Latent Dirichlet Allocation (LDA), Conditional Random Fields (CRF), Convolutional Neural Nets, Recurrent Neural Nets and LSTMs
   * Advanced topics: Learnability, Gaussian Processes, Ensemble Methods, Reinforcement Learning, etc.   * Advanced topics: Learnability, Gaussian Processes, Ensemble Methods, Reinforcement Learning, etc.
Line 20: Line 20:
 ===== Lecture Times ===== ===== Lecture Times =====
  
-  * Section A: Wednesdays and Fridays1:30pm 3:00pmlocation (TBA)+  * Section A: Tuesdays and Thursdays4:00pm 5:30pmlocated at <del>BC228</del> **SC 214**.
  
 ===== Lecturer ===== ===== Lecturer =====
  
   * Prof. [[http://www.cse.yorku.ca/~hj|Hui Jiang]] @ CSEB3014   * Prof. [[http://www.cse.yorku.ca/~hj|Hui Jiang]] @ CSEB3014
start.1472497456.txt.gz · Last modified: 2016/08/29 19:04 by hj